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首页> 外文期刊>PLoS Computational Biology >Sampling bias and model choice in continuous phylogeography: Getting lost on a random walk
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Sampling bias and model choice in continuous phylogeography: Getting lost on a random walk

机译:在连续发球地理中的抽样偏见和模型选择:随机漫步

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Phylogeographic inference allows reconstruction of past geographical spread of pathogens or living organisms by integrating genetic and geographic data. A popular model in continuous phylogeography—with location data provided in the form of latitude and longitude coordinates—describes spread as a Brownian motion (Brownian Motion Phylogeography, BMP) in continuous space and time, akin to similar models of continuous trait evolution. Here, we show that reconstructions using this model can be strongly affected by sampling biases, such as the lack of sampling from certain areas. As an attempt to reduce the effects of sampling bias on BMP, we consider the addition of sequence-free samples from under-sampled areas. While this approach alleviates the effects of sampling bias, in most scenarios this will not be a viable option due to the need for prior knowledge of an outbreak’s spatial distribution. We therefore consider an alternative model, the spatial Λ-Fleming-Viot process (ΛFV), which has recently gained popularity in population genetics. Despite the ΛFV’s robustness to sampling biases, we find that the different assumptions of the ΛFV and BMP models result in different applicabilities, with the ΛFV being more appropriate for scenarios of endemic spread, and BMP being more appropriate for recent outbreaks or colonizations.
机译:Phylogepuction推理允许通过整合遗传和地理数据来重建病原体或生物体的过去地理扩散。在连续的Phylogeography中的一种流行模型 - 具有纬度和经度坐标形式提供的位置数据 - 描述了在连续空间和时间的布朗运动(Brownian Motion Phylogeography,BMP)中扩展,类似于连续特征进化的类似模型。在这里,我们表明使用该模型的重建可以受到采样偏差的强烈影响,例如从某些区域缺乏采样。作为减少对BMP上采样偏差的影响的尝试,我们考虑从被抽样区域添加无序样品。虽然这种方法减轻了采样偏差的影响,但在大多数情况下,由于需要先前了解爆发的空间分布,这不会是一种可行的选择。因此,我们考虑了替代模型,空间λ - 弗莱明 - 冒险过程(λfv),最近在人口遗传学中获得了普及。尽管λfv对采样偏差的鲁棒性,但我们发现λfv和bmp模型的不同假设导致不同的信息,λfv更适合流行扩展的场景,BMP更适合最近的爆发或殖民地。

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